Clustering Mining Equipment Productivity Data Using K-Means Algorihtm

Muh Sandi Arista Ikhsan Yahmid, Tony Chen, Muhammad Emirat Millenium Try, Karno Nugroho Silangin, Nurul Alifia Putri, A. V. Anas
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Abstract

There are many factors that affect the productivity of mining equipment, one of which is the condition of the mining equipment when it is used. Knowing the condition of the machines on mining equipment is mandatory for supervisors in mining activities. In analyzing data on the condition of mining equipment in large quantities requires a lot of energy and time, so a classification model is needed that can categorize the mining equipment based on its performance. Data Mining is a process that uses statistical, mathematical, artificial intelligence and machine learning techniques to extract information. The results of data mining for mining productivity data are obtained duration of mining equipment work has a impact on productivity based on correlation value between work duration and maintenance duration of a tool. Data mining analysis is also carried out by clustering mining equipment using the K-Means model. The results obtained a conclusion that supports mining equipment with less working duration affects to productivity. The result shows variables that affect the productivity of mining equipment and divide mining equipment categories based on tool performance with data mining clustering techniques.
基于k -均值算法的采矿设备生产率数据聚类研究
影响矿山设备生产率的因素很多,其中之一就是矿山设备在使用时的状况。了解采矿设备上机器的状况对采矿活动的监督员来说是必须的。在对大量矿山设备状态数据进行分析时,需要耗费大量的精力和时间,因此需要一种能够根据矿山设备的性能对其进行分类的分类模型。数据挖掘是一个使用统计、数学、人工智能和机器学习技术来提取信息的过程。对采矿生产率数据进行数据挖掘的结果是,根据采矿设备工作时长与工具维修时长之间的相关值,得出采矿设备工作时长对生产率的影响。利用K-Means模型对采矿设备进行聚类,进行数据挖掘分析。研究结果支持矿山设备缩短工龄对生产效率的影响。结果显示了影响采矿设备生产率的变量,并利用数据挖掘聚类技术根据工具性能划分了采矿设备类别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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